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Measurement of Ultra-High Energy Cosmic Rays
with CHICOS
Thesis by
Elina Brobeck
In Partial Fulfillment of the Requirements
for the Degree of
Doctor of Philosophy
California Institute of Technology
Pasadena, California
2009
(Defended September 18, 2008)
ii
c© 2009Elina Brobeck
All Rights Reserved
iii
Acknowledgements
The CHICOS project is directed by Robert McKeown (California Institute of Tech-
nology). Principal collaborators include Ryoichi Seki (California State University,
Northridge), G. B. Yodh (University of California, Irvine), Jim Hill (California State
University, Dominguez Hills), and John Sepikas (Pasadena City College).
Project Coordinators Michelle Larson and Theresa Lynn oversaw the deployment
of sites in the CHICOS array and coordinated among hundreds of teachers and school
administrators to keep the array running. The data-acquisition software was designed
and implemented by Sandy Horton-Smith and Juncai Gao. Chao Zhang contributed
critical parts of the original data-filtering software and a set of diagnostic tools for
determining the health of sites in the field.
The CHICOS project owes much to Brant Carlson and Chris Jillings for the orig-
inal development of the shower-reconstruction software. We thank Pat Huber, who
has performed the essential task of maintaining the CHICOS server and has also over-
seen the deployment and maintenance of the CHICOS computers in the field. Many
thanks are also given to Bob Gates, who has been crucial in running the CHICOS
summer program for high school students.
CHICOS has benefitted from the work of summer students Stephen Ho, Keith
Chan, Derek Wells, Shawn Ligocki, and Veronica Anderson in developing a CHICOS-
specific lateral distribution function and time distribution function. We also wish to
acknowledge students Angela Marotta, for her work on the temperature variation of
CHICOS data, Clare Kasper, for her analysis of the detector energy spectra, Amanda
McAuley, who developed the tools to construct a sky map of the CHICOS cosmic ray
data, and Jay Conrod, who designed an interactive graphical user interface to the
iv
shower reconstruction software. Philipp Bonushkin and Eric Black performed the
measurement of the effective area of the CHICOS detectors.
We gratefully acknowledge the many high school and middle school teachers and
administrators who volunteered their time and energy to help with the deployment
and continued operation of the CHICOS array. We thank the many high school
students who chose to participate in the CHICOS summer sessions and aided in the
commissioning of CHICOS detectors.
The work in this paper makes use of unthinned AIRES air shower simulations con-
tributed by Barbara Falkowski. The analysis presented here has benefitted greatly
from discussion and feedback offered by Chris Jillings, Theresa Lynn, Robert McKe-
own, and other CHICOS collaborators.
The CHICOS project is grateful to Los Alamos National Laboratory for the dona-
tion of scintillator detectors, and IBM for the donation of computer equipment. We
acknowledge financial support from the National Science Foundation (grants PHY-
0244899 and PHY-0102502), the Weingart Foundation, and the California Institute
of Technology.
v
Abstract
The California HIgh school Cosmic ray ObServatory (CHICOS) is a ground-based
scintillator array designed to measure the extended air showers of ultra-high energy
cosmic rays. The goal of the project is to gain insight into the origin of ultra-high
energy cosmic rays by measuring the energy spectrum and the distribution of arrival
directions.
The CHICOS array has been in operation since 2003. It consists of 77 pairs of
scintillator dectectors deployed at schools in the San Fernando and San Gabriel valleys
near Los Angeles, and is designed to observe cosmic ray air showers at energies of
1018 eV and above. In addition, the Chiquita subarray is designed to observe smaller
showers in the energy range of 1016–1019 eV.
We present new descriptions of the air shower lateral distribution function and
time distribution function, which have been derived from AIRES-generated simulated
air showers. The new functions are specific to the CHICOS altitude and allow for a
maximum likelihood shower reconstruction method, which is more appropriate to the
CHICOS data than the χ2 minimization method. We present several analyses of the
accuracy of the reconstruction software in the energy ranges available to the Chiquita
and CHICOS arrays.
The energy spectrum between 1017 eV and 1019 eV has been measured by the
Chiquita subarray. At the lowest energy range, it is found to agree with previous
measurements, while the measured flux falls below previous experiments for energies
greater than approximately 1017.5 eV. The CHICOS energy spectrum above 1018.4 eV
is found to agree with previous results published by AGASA. However, we do not
observe the cutoff in the spectrum at 1020 eV reported more recently by the Auger
vi
and HiRes Collaborations.
A correlation analysis between CHICOS data and nearby active galactic nuclei
(AGN) was performed. No excess of cosmic rays was observed in the vicinity of
nearby AGN. The maximum correlation was observed for cosmic ray events with
E > 1020 eV and for AGN with z < 0.009, with Pchance = 21%. This is consistent
with random correlations from an isotropic distribution, a result also found by HiRes,
but in disagreement with Auger.
vii
Contents
Acknowledgements iii
Abstract v
List of Figures x
List of Tables xiii
1 Introduction 1
1.1 Historical Background . . . . . . . . . . . . . . . . . . . . . . . . . . 1
1.2 The CHICOS Experiment . . . . . . . . . . . . . . . . . . . . . . . . 5
2 Origins of UHECRs 7
2.1 Diffusive Shock Acceleration . . . . . . . . . . . . . . . . . . . . . . . 7
2.2 The GZK Cutoff . . . . . . . . . . . . . . . . . . . . . . . . . . . . . 9
2.3 Potential UHECR Sources . . . . . . . . . . . . . . . . . . . . . . . . 13
2.3.1 Radio Galaxies and AGN . . . . . . . . . . . . . . . . . . . . 15
2.3.2 Neutron Stars and Magnetars . . . . . . . . . . . . . . . . . . 19
2.3.3 Quasar Remnants . . . . . . . . . . . . . . . . . . . . . . . . . 20
2.3.4 Starburst Galaxies and LIGs . . . . . . . . . . . . . . . . . . . 22
2.3.5 Gamma Ray Bursts . . . . . . . . . . . . . . . . . . . . . . . . 23
2.3.6 Top-Down Models . . . . . . . . . . . . . . . . . . . . . . . . 24
3 Cosmic Ray Air Showers 25
3.1 Air Shower Development . . . . . . . . . . . . . . . . . . . . . . . . . 25
viii
3.2 Lateral Distribution Function . . . . . . . . . . . . . . . . . . . . . . 30
3.2.1 AGASA LDF . . . . . . . . . . . . . . . . . . . . . . . . . . . 32
3.2.2 CHICOS LDF . . . . . . . . . . . . . . . . . . . . . . . . . . . 33
3.3 Time Distribution Function . . . . . . . . . . . . . . . . . . . . . . . 40
3.3.1 AGASA TDF . . . . . . . . . . . . . . . . . . . . . . . . . . . 40
3.3.2 CHICOS TDF . . . . . . . . . . . . . . . . . . . . . . . . . . . 41
4 The CHICOS Experiment 49
4.1 The Detector Array . . . . . . . . . . . . . . . . . . . . . . . . . . . . 49
4.2 Data-Collection Software . . . . . . . . . . . . . . . . . . . . . . . . . 58
5 Shower Reconstruction Software 62
5.1 Overview of libCTShower . . . . . . . . . . . . . . . . . . . . . . . . 62
5.1.1 Data Format . . . . . . . . . . . . . . . . . . . . . . . . . . . 63
5.1.2 Code . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . 64
5.2 Shower Reconstruction . . . . . . . . . . . . . . . . . . . . . . . . . . 65
5.2.1 Chi-Square Reconstruction Method . . . . . . . . . . . . . . . 68
5.2.2 Maximum Likelihood Reconstruction Method . . . . . . . . . 70
5.3 User Interface . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . 74
6 Modeling the Array Response 79
6.1 Simulation of Air Showers Using AIRES . . . . . . . . . . . . . . . . 79
6.2 Modeling the Detector Response . . . . . . . . . . . . . . . . . . . . . 81
6.2.1 Energy Deposited in the Scintillator . . . . . . . . . . . . . . . 81
6.2.2 Time-Over-Threshold Measurement . . . . . . . . . . . . . . . 82
6.2.3 Timing Accuracy . . . . . . . . . . . . . . . . . . . . . . . . . 83
6.3 Modeling of Photon Interactions . . . . . . . . . . . . . . . . . . . . . 84
6.3.1 Compton Scattering . . . . . . . . . . . . . . . . . . . . . . . 85
6.3.2 Pair Production . . . . . . . . . . . . . . . . . . . . . . . . . . 88
6.4 Analysis of Simulated Shower Reconstructions . . . . . . . . . . . . . 95
ix
7 Analysis of Low-Energy Data 103
7.1 Low-Energy Data . . . . . . . . . . . . . . . . . . . . . . . . . . . . . 103
7.2 Simulation of Low-Energy Showers . . . . . . . . . . . . . . . . . . . 105
7.3 Estimating the Low-Energy Flux . . . . . . . . . . . . . . . . . . . . 109
8 Analysis of High-Energy Data 116
8.1 Results from Previous Experiments . . . . . . . . . . . . . . . . . . . 116
8.2 High-Energy Data from CHICOS . . . . . . . . . . . . . . . . . . . . 117
8.3 Simulation of High-Energy Showers . . . . . . . . . . . . . . . . . . . 119
8.4 Estimating the High-Energy Flux . . . . . . . . . . . . . . . . . . . . 124
9 Correlation of UHECR Data with AGN 128
9.1 Quantifying the Degree of Correlation . . . . . . . . . . . . . . . . . . 128
9.2 Recent Results from Other Experiments . . . . . . . . . . . . . . . . 130
9.3 Results from CHICOS Data . . . . . . . . . . . . . . . . . . . . . . . 131
10 Conclusions 137
A Site Locations and Parameters 139
B CHICOS Showers Above 1018.4 eV 144
Bibliography 151
x
List of Figures
3.1 Diagram of an air shower . . . . . . . . . . . . . . . . . . . . . . . . . 26
3.2 Profile of an air shower . . . . . . . . . . . . . . . . . . . . . . . . . . . 27
3.3 Comparison of CORSIKA and AIRES simulations . . . . . . . . . . . . 30
3.4 Low-energy iron-primary electron LDF . . . . . . . . . . . . . . . . . . 36
3.5 Low-energy iron-primary muon LDF . . . . . . . . . . . . . . . . . . . 37
3.6 High-energy proton-primary electron LDF . . . . . . . . . . . . . . . . 38
3.7 High-energy proton-primary muon LDF . . . . . . . . . . . . . . . . . 39
3.8 High-energy proton-primary electron TDF . . . . . . . . . . . . . . . . 45
3.9 High-energy proton-primary muon TDF . . . . . . . . . . . . . . . . . 46
3.10 Energy invariance of the electron TDF . . . . . . . . . . . . . . . . . . 47
3.11 Energy invariance of the muon TDF . . . . . . . . . . . . . . . . . . . 48
4.1 Sites in the CHICOS array as of July 2005 . . . . . . . . . . . . . . . . 50
4.2 Array size and reporting statistics, 2003–2005 . . . . . . . . . . . . . . 51
4.3 Array size and reporting statistics, 2006–2007 . . . . . . . . . . . . . . 52
4.4 Diagram of a CHICOS array site . . . . . . . . . . . . . . . . . . . . . 53
4.5 Diagram of CHICOS detectors . . . . . . . . . . . . . . . . . . . . . . 53
4.6 CEU schematic . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . 54
4.7 Sample decay-constant calibration . . . . . . . . . . . . . . . . . . . . 55
4.8 Sample pulse-energy histogram . . . . . . . . . . . . . . . . . . . . . . 56
4.9 Labview data acquisition program front panel . . . . . . . . . . . . . . 60
4.10 Labview data acquisition program history panel . . . . . . . . . . . . . 60
4.11 Labview data acquisition program satellites panel . . . . . . . . . . . . 61
4.12 Labview data acquisition program energy panel . . . . . . . . . . . . . 61
xi
5.1 Sample shower data . . . . . . . . . . . . . . . . . . . . . . . . . . . . 64
5.2 Transform function f(xang, yang) used to map (θ, φ) to linear coordinates 67
5.3 Tangent of the vertical angle θ as a function of xang and yang . . . . . . 67
5.4 Sample output of shower reconstructor on raw shower data . . . . . . . 76
5.5 Sample output of shower reconstructor after removal of accidental hits 77
5.6 Sample output of shower reconstructor after removal of accidental hits
and removal of inactive sites from the array . . . . . . . . . . . . . . . 78
6.1 Simulated pulse measurement . . . . . . . . . . . . . . . . . . . . . . . 84
6.2 Cross section for Compton scattering . . . . . . . . . . . . . . . . . . . 89
6.3 Distribution of recoil electron energies from Compton scattering . . . . 89
6.4 Cross section for pair production in hydrogen . . . . . . . . . . . . . . 91
6.5 Cross section for pair production in carbon . . . . . . . . . . . . . . . 91
6.6 Pair-produced electron energies . . . . . . . . . . . . . . . . . . . . . . 94
6.7 Distribution of reconstructed energies for simulated showers at 1017 eV 97
6.8 Distribution of reconstructed energies sorted by shower inclination . . . 98
6.9 Distribution of reconstructed angles sorted by shower inclination . . . . 99
6.10 Input core locations of simulated showers . . . . . . . . . . . . . . . . . 100
6.11 Reconstructed core locations of simulated showers . . . . . . . . . . . . 100
6.12 Example of simulated shower data . . . . . . . . . . . . . . . . . . . . 101
6.13 Example reconstruction of simulated shower data . . . . . . . . . . . . 102
7.1 Map of the Chiquita detector sites . . . . . . . . . . . . . . . . . . . . 104
7.2 Energy distribution of showers simulated for Chiquita . . . . . . . . . . 106
7.3 Reconstructed energies of low-energy simulations . . . . . . . . . . . . 107
7.4 Reconstructed core locations of low-energy simulations . . . . . . . . . 107
7.5 Reconstructed vertical angles of low-energy simulations . . . . . . . . . 108
7.6 Reconstructed azimuthal angles of low-energy simulations . . . . . . . 108
7.7 Acceptance of the Chiquita array . . . . . . . . . . . . . . . . . . . . . 109
7.8 Energy distribution of Chiquita showers between 1016 eV and 1019 eV . 110
7.9 Flux times E3, as measured by the Chiquita array . . . . . . . . . . . 114
xii
8.1 Core locations of simulated high-energy showers . . . . . . . . . . . . . 120
8.2 Energy distribution of showers simulated for CHICOS . . . . . . . . . 121
8.3 Reconstructed energies of high-energy simulations . . . . . . . . . . . . 121
8.4 Reconstructed core locations of high-energy simulations . . . . . . . . . 122
8.5 Reconstructed core locations of high-energy simulations . . . . . . . . . 122
8.6 Reconstructed vertical angles of high-energy simulations . . . . . . . . 123
8.7 Reconstructed azimuthal angles of high-energy simulations . . . . . . . 123
8.8 Acceptance of the CHICOS array . . . . . . . . . . . . . . . . . . . . . 125
8.9 Relative sky exposure of the CHICOS experiment . . . . . . . . . . . . 125
8.10 Energy distribution of CHICOS showers between 1018.4 eV and 1020.4 eV 126
8.11 Flux times E3, as measured by the CHICOS array . . . . . . . . . . . 126
9.1 Exposure-weighted fraction of the sky covered by windows of angular
radius θmax centered on nearby AGN . . . . . . . . . . . . . . . . . . . 132
9.2 Cumulative binomial probability P of the observed correlation resulting
from a random isotropic distribution . . . . . . . . . . . . . . . . . . . 134
9.3 The set of CHICOS data points used in the correlation search . . . . . 135
9.4 The set of 11 CHICOS data points with E > 100 EeV and the set of
220 AGN with z < 0.009 for which there is a maximum correlation . . 136
xiii
List of Tables
4.1 GPS settings for M12 receivers . . . . . . . . . . . . . . . . . . . . . . 57
4.2 GPS settings for UT+ receivers . . . . . . . . . . . . . . . . . . . . . . 57
6.1 Parameters of the AIRES showers used in this work . . . . . . . . . . . 80
6.2 Fraction of showers detected at 1017 eV . . . . . . . . . . . . . . . . . . 95
A.1 Database of site locations, part I . . . . . . . . . . . . . . . . . . . . . 140
A.2 Database of site locations, part II . . . . . . . . . . . . . . . . . . . . . 141
A.3 Database of site parameters, part I . . . . . . . . . . . . . . . . . . . . 142
A.4 Database of site parameters, part II . . . . . . . . . . . . . . . . . . . 143
B.1 High-energy showers observed in 2003 . . . . . . . . . . . . . . . . . . 145
B.2 High-energy showers observed in 2004 . . . . . . . . . . . . . . . . . . 146
B.3 High-energy showers observed in 2005, part I . . . . . . . . . . . . . . 147
B.4 High-energy showers observed in 2005, part II . . . . . . . . . . . . . . 148
B.5 High-energy showers observed in 2006 . . . . . . . . . . . . . . . . . . 149
B.6 High-energy showers observed in 2007 . . . . . . . . . . . . . . . . . . 150
1
Chapter 1
Introduction
The energy spectrum of cosmic rays spans over 10 orders of magnitude, from 109 eV
to 1020 eV, and perhaps beyond. Over the past 50 years, ground array experiments
have increasingly been able to probe the highest energy range of the spectrum, yet
much remains uncertain. At the highest energies, the existence of a flux cutoff and the
origin of the cosmic ray particles have yet to be determined. The CHICOS experiment
has been designed to provide data in this ultra-high energy range of the cosmic ray
spectrum.
1.1 Historical Background
The phenomenon now known as cosmic radiation was first recognized as having an
extraterrestrial origin following the experiments of Victor Hess in 1912 [1]. Hess,
intending to show that the pervasive ionizing radiation in the atmosphere emanated
from the Earth, measured the intensity change with altitude from a hot air balloon.
Counter to expectations, he found that the radiation intensity increased with altitude
and must therefore be arriving at the Earth from space. For this discovery, Hess was
awarded the Nobel Prize in 1936.
Among the explanations put forward to explain cosmic radiation was Millikan’s
hypothesis that it was neutral gamma radiation emitted in the process of protons
and electrons coming together in space to form atoms [2]. In 1933, however, Arthur
Compton carried out a worldwide survey that showed the intensity of cosmic rays
2
varied with latitude, concluding that the radiation must consist of charged particles
whose paths were deflected by the Earth’s magnetic field [3]. Assuming the particles
were electrons, Compton calculated their energy to be approximately 7× 109 eV.The energy spectrum was soon to be expanded even further. In 1938, Pierre Auger
observed that some particles, separated by as much as 20 m, arrived in time coinci-
dence [4, 5]. This phenomenon was simultaneously discovered by Werner Kohlhörster,
working separately in Germany [6]. Additional experiments with more widely spaced
counters showed that coincidence events could be observed as far as 200 m apart [7].
Under the assumption that particles arriving in coincidence derived from a single pri-
mary source, Auger estimated the energy of the primary cosmic rays to be 1015 eV.
This was the beginning of the study of the particle cascades known as extended cos-
mic ray air showers. The details of our current understanding of air showers will be
discussed in chapter 3.
The systematic measurement of ultra-high energy cosmic rays (UHECRs) via sam-
pling of extended air showers was first implemented in 1954 at the Agassiz station of
the Harvard College Observatory [8]. This experiment was the first to use plastic scin-
tillator detectors to simultaneously measure particle densities and arrival times (from
which the arrival direction of the shower can be derived). The array of 15 detectors
was operational between 1954 and 1957, and extended the known energy spectrum
to above 1018 eV by the observation of a shower with more than 109 particles.
The Harvard array was used as a prototype for the larger Volcano Ranch array
built in New Mexico. In 1962, Volcano Ranch measured the first particle with an
estimated energy greater than 1020 eV [9]. Following the discovery of the cosmic
microwave background in 1965, separate theoretical analsyses by Greisen [10] and
Zatsepin and Kuz’min [11] predicted a sharp decline, now known as the GZK cutoff,
in the cosmic ray spectrum near this energy due to photopion production. It was
noted by Greisen that given the total exposure of UHECR experiments at that time,
the observation of even one particle above 1020 eV was unexpected.
A number of ground array experiments designed to measure cosmic rays in the
ultra-high energy range have since been carried out. These experiments include the
3
Haverah Park array in England [12], the Yakutsk array in Russia [13], the Sydney
University Giant Airshower Recorder (SUGAR) in Australia [14], the KASCADE
experiment in Germany [15, 16, 17, 18] and its follow-up KASCADE-Grande [19], and
the Akeno Giant Air-Shower Array (AGASA) in Japan [20, 21]. Of these, AGASA
has accumulated the largest data set, and sets a standard against which CHICOS can
be compared.
The AGASA array was in operation between 1990 and 2003. It covered 100 km2
with an array of 111 scintillation detectors. Over 14 years of observation, AGASA
recorded nearly 1000 events above 1019 eV, including 11 events above 1020 eV [22,
23, 24]. Their data showed that the slope of the low-energy spectrum extended up to
the highest observed energies. This result was in conflict with the theoretical GZK
cutoff, which predicted AGASA would observe only 1.9 events above 1020 eV [24].
In addition, the sky map of the UHECR data collected by AGASA showed evi-
dence of small-scale clustering as early as 1996 [25] and this result has been updated
and expanded several times [26, 27, 28, 29, 30]. The final data set finds one triplet
and 6 additional doublets in a data set of 67 events above 4 × 1019 eV [24]. Each ofthe 9 pairs of data points has an angular separation of less than 2.5◦, corresponding
to the angular resolution of the array. The probability of that number of pairs arising
from a random isotropic distribution is given as less than 0.1%. The combined data
set of 92 events above 4× 1019 eV from Volcano Ranch, Haverah Park, Yakutsk, andAGASA also showed statistically significant clustering [31].
These two unexpected results from AGASA, if confirmed, would have important
implications for both astronomy and physics and have fueled continued research of
ultra-high energy cosmic rays. A nondetection of the predicted GZK cutoff would
imply either that ultra-high energy cosmic rays are not primarily protons or that there
are nearby sources capable of accelerating protons to these energies. The identification
of small-scale clustering may be a first step to identifying the astrophysical sources
of UHECRs. The potential origins of ultra-high energy particles are still an area of
great debate and the possibilities will be discussed in chapter 2.
In addition to the ground array experiments, high-energy cosmic rays can be
4
measured via the air fluorescence the showers produce. This method was pioneered
by the Fly’s Eye experiment in Utah [32, 33], which has since been replaced by the
second-generation experiment, the High Resolution Fly’s Eye (HiRes) [34, 35]. The
HiRes collaboration has recently reported that they have observed the GZK cutoff
at the expected energy of 6 × 1019 eV [36, 37]. They also note that as of 2006,the AGASA collaboration has revised their energy estimates downward by 10–15%,
lowering the observed number of super-GZK events from 11 to 5 or 6. The remaining
points no longer have sufficient statistical significance to constitute a nondetection of
the cutoff [38, 39].
The air fluorescence technique is being used in conjunction with a ground array
at the Pierre Auger Observatory currently under construction in Argentina [40, 41].
The Auger Observatory is the first of two planned sites, the second of which will
be located in the northern hemisphere. The ground array at each site is to consist
of 1600 water Cherenkov detectors spread out over 3000 km2. Although still under
construction, the exposure of the Auger Observatory is already twice that of HiRes
and 4 times that of AGASA [42]. In addition, the combination of a ground array with
fluorescence detectors provides a unique advantage in the calibration of their results.
Initial data from the southern Pierre Auger Observatory have confirmed the HiRes
detection of the GZK cutoff [43, 44, 42]. However, the exact shape of the upper end
of the cosmic ray spectrum is still of great interest.
Both HiRes and the Pierre Auger Observatory have failed to observe the small-
scale clustering reported by AGASA [45, 46]. However, the Pierre Auger Observatory
has recently claimed to observe a correlation between ultra-high energy cosmic rays
and active galaxies [47, 48]. Using the same methodology, data from HiRes shows only
the degree of correlation expected by chance from a random, isotropic distribution of
cosmic rays [49]. Given that the nuclei of nearby active galaxies are considered to be
likely candidates for UHECR sources, this possibility merits further investigation. A
the results of a correlation searach between CHICOS UHECR data and nearby active
galaxies is presented in chapter 9.
5
1.2 The CHICOS Experiment
The California HIgh School Cosmic Ray Observatory, or CHICOS, is a collaboration
between U.C. Irvine, C.S.U. Northridge, and the California Institute of Technology
(Caltech). The Project Director is Dr. Robert McKeown of Caltech and the Education
Director is Dr. Ryoichi Seki of C.S.U. Northridge. Financially, the project is primarily
supported by an NSF grant, with hardware donations from Los Alamos National
Laboratory and IBM.
The CHICOS project was conceived as a collaboration with Los Angeles-area
high schools for the dual purposes of education outreach and UHECR research. The
CHICOS array is made up of pairs of solid-scintillator cosmic ray detectors spread
throughout the San Gabriel and San Fernando valleys. Each pair of detectors is
situated in a high school (or in some cases a middle or elementary school), with the
detectors and a GPS antenna typically placed on the roof and a workstation in a
nearby science classroom. A major advantage of using secondary schools as detector
sites is that the infrastructure needed for power and data transfer is already in place,
allowing for a very large array to be built with minimal cost. See chapter 4 for details
of the construction and operation of the array.
The teachers who are involved with the project are encouraged to integrate it
into the science curriculum. All CHICOS data is made available to teachers and
students via the project website for this purpose. The project also offers a series of
week-long summer programs for students from participating schools. Other cosmic
ray detector arrays have used schools as detector sites (for example, ALTA in Alberta
and CROP in Nebraska), but the CHICOS array differs from these projects in its
greater emphasis of science goals in addition to educational contributions.
Much work has gone into the development of user-friendly event reconstruction
software. In keeping with the educational mission of CHICOS, this is available in
interactive format on the CHICOS webpage.1. The details of the event reconstruction
software are discussed in chapter 5. Chapter 6 describes the methods used to assess
1www.chicos.caltech.edu
6
the accuracy of the reconstructor software using simulated, unthinned air showers at
1017 eV.
The CHICOS array has been designed to observe cosmic ray air showers with
energies of about 1018 eV and above. In addition, a more closely spaced subset of the
array, nicknamed Chiquita and located on the Caltech campus, is designed to observe
showers down to energies of 1016 eV. Data from the smaller array is in the energy
range where the spectrum has been more accurately measured, and thus provides a
useful calibration of the data reconstruction methods. Chapters 7 and 8 present the
data obtained by the Chiquita and CHICOS arrays, respectively.
7
Chapter 2
Origins of UHECRs
The flux of cosmic rays appears to fall smoothly over at least 10 orders of magnitude,
decreasing approximately as the inverse cube of the energy. There is a slight break at
approximately 1015.5 eV, known as the “knee,” where the slope steepens from E−2.7
to E−3. The spectrum steepens again to E−3.3 at 1017.7 eV, then flattens slightly to
E−2.7 at the “ankle,” around 1019 eV [51, 52]. Among the physical processes that may
be able to explain the power-law spectrum is diffusive shock acceleration, reviewed
briefly in section 2.1. Theoretical considerations, discussed in Section 2.2, predict
that the flux of cosmic rays should drop sharply above 6 × 1019 eV, though thereremains disagreement over whether this has been observed.
Despite the relative uniformity of the spectrum over the measured energy range,
cosmic rays are believed to come from a diversity of sources, ranging from solar to
galactic to extragalactic. In the ultra-high energy range around the ankle and above,
it is believed that extragalactic particles dominate the flux for reasons discussed in
section 2.3, although the specific sources are unknown.
2.1 Diffusive Shock Acceleration
One process by which cosmic rays may acquire ultra-high energies is diffusive shock
acceleration. This is a process in which the the particle repeatedly crosses a shock
front, gaining energy at each crossing [53]. This theory is appealing both because
shock fronts are a common astrophysical phenomenon and because the output of
8
diffusive shock acceleration is a power-law energy spectrum.
Following Malkov [54], consider a shock front in which there is a velocity change
across the shock front from u1 to u2. A particle with velocity v and momentum vector
p crossing the shock front at angle θ to the shock normal emerges with momentum p′.
Define the dimensionless velocity change between frames upstream and downstream
of the shock to be β = u1−u2c
. It can then be shown from the transformation between
frames in special relativity that the relationship between p and p′ is
(p′
p
)2=
1
1− β2(
1 +2βc
vcos θ +
β2c2
v2− β2 sin2 θ
). (2.1)
For a nonrelativistic shock, β ¿ 1, and to first order in β we have
p′ = p(
1 +βc
vcos θ
), (2.2)
which can equivalently be written in vector notation as
∆p = p′ − p = p · (u1 − u2)v
. (2.3)
The flux of particles that go from a momentum less than p to a momentum
greater than p as they cross the shock can be found by integrating p over all possible
directions:
Φ(p) =
∫ pp−∆p
dp′∫
f(p′)v · n p′2 dΩ
≈∫
∆p f(p)v · n p2 dΩ (2.4)
≈∫
f(p)v · n[p · (u1 − u2)
v
]p2 dΩ.
When ∆p ¿ p and β ¿ 1, the momentum distribution function will be approx-imately isotropic, f(p) ≈ f(p). Under these assumptions, equation (2.4) simplifies
9
to
Φ(p) = p2f(p)
∫v · n
[p · (u1 − u2)
v
]dΩ =
4π
3p3f(p)n · (u1 − u2) . (2.5)
Particle conservation requires that divergence of the momentum space accelera-
tion flux balance the difference between the upstream and downstream momentum
distributions and the source term Q(p) of particles being injected into the shock. This
can be written [55] as
∂Φ(p)
∂p− n · u14πp2f1(p) + n · u24πp2f2(p) = 4πQ(p). (2.6)
Using equation (2.5) with equation (2.6), we obtain the momentum distribution
produced by the shock:
f2(p) = p−q
∫ p0
(Q(p′) + n · u1f1(p′)) p′q−1dp′, (2.7)
where
q =3n · u1
n · (u1 − u2) =3r
r − 1 . (2.8)
It can be seen from this expression that the output energy spectrum is a power
law with slope q determined by r, the compression ratio of the shock. For a strong
shock, r = 4, and the output spectrum f(p) ∝ p−4 corresponds to an energy spectrumproportional to E−2.
2.2 The GZK Cutoff
As ultra-high energy cosmic rays travel through space, they interact with the cosmic
microwave background (CMB). There are two main types of interactions involving
cosmic ray protons: pair production and photo-pion production. Photo-pion pro-
duction may proceed as p + γ → π0 + p, p + γ → π+ + n, or via the productionof multiple pions. Single pion production dominates at energies just above the in-
10
teraction threshold, while the cross section for multiple pion production dominates
at higher energies [56]. Photo-pair production, which becomes important at energies
below the photo-pion threshold, proceeds as p + γ → p + e+ + e−.To obtain the energy threshold for either interaction (following Schlickeiser [57]),
we must work in the Lorentz geometry, where the line segment is defined by ds2 =
c2dt2− dx2− dy2− dz2. We define the four-momentum of a particle to be P = ( ²c,p),
where P 2 = m2c2 is an invariant quantity. In general, the energy threshold for particle
production occurs when the initial energy of all particles in the center-of-mass frame
is equal to the rest mass of all particles following the interaction.
The total energy before the interaction in the center-of-mass frame is given by
(ECOMtotal )2 = (ECOMa + E
COMb )
2 = c2(PCOMa + PCOMb )
2 = c2(Pa + Pb)2 (2.9)
by virtue of the invariance of P 2. Using P 2 = m2c2 and PaPb =²ac
²bc− papb, we
obtain
(ECOMtotal )2 = m2ac
4 + m2bc4 + 2²a²b − 2papbc2. (2.10)
The energy threshold for the interaction is
Eth = mac2 + mbc
2 + ∆mc2, (2.11)
where ∆m is the difference in rest mass between the incoming and outgoing particles.
Setting ECOMtotal = Eth, we have
²a²b − papbc2 = mambc4 + ∆mc4(
ma + mb +∆m
2
). (2.12)
We can simplify equation (2.12) by first rewriting it as
²a²b − papbc2mambc4
= 1 + ∆m
(1
ma+
1
mb+
∆m
2mamb
). (2.13)
The left-hand side of equation (2.13) can now be written in terms of the Lorentz
factor γ = ²mc2
, where we have also used papb = papb cos θ and p =√
γ2 − 1 mc. This
11
produces
γaγb −√
(γ2a − 1)(γ2b − 1) cos θ = 1 + ∆m(
1
ma+
1
mb+
∆m
2mamb
). (2.14)
In the case of a proton-photon interaction, where particle b is massless, equa-
tion (2.12) reduces to
²b
(γa −
√γ2a − 1 cos θ
)= ∆mc2
(1 +
∆m
2ma
). (2.15)
For relativistic cosmic rays, with γa À 1, equation (2.15) becomes
γa =∆mc2
(1− cos θ)²b
(1 +
∆m
2ma
). (2.16)
The energy required for the interaction is therefore
E = γamac2 =
[(∆m + ma)
2 −m2a]c4
2²b(1− cos θ) . (2.17)
The minimum energy for the interaction occurs in a head-on collision, with cos θ =
−1. In this case, equation (2.17) becomes
Emin =
[(∆m + ma)
2 −m2a]c4
4²b. (2.18)
For photo-pion production, ma = mp and ∆m =∑
mπ, the total mass of pions
produced. Using ²b = 〈²〉, the average energy of CMB photons, the minimum energyneeded for the proton to initiate pion production is given by
Emin =
[(∑
mπ + mp)2 −m2p
]c4
4 〈²〉 . (2.19)
The average energy of CMB photons is approximately 〈²〉 = 7 × 10−4 eV. Usingm±π = 139.570 MeV/c
2 (m0π = 134.977 MeV/c2), and mp = 938.272 MeV/c
2, we have
Emin = 1.0× 1020 eV (2.20)
12
for the case of single pion production. The threshold for multiple pion production is
correspondingly higher.
However, because the blackbody distribution of photons has a tail that extends
to higher energies, protons of lower energies can occasionally undergo photo-pion
production. Repeated encounters will eventually cause the energy of the proton to
fall below the energy threshold for a given interaction with the majority of CMB
photons.
The attenuation length due to photo-pion production for a proton with energy
1020 eV is approximately 100 Mpc, but drops to 10 Mpc for a proton at 1021 eV [58].
Given these limits, ultra-high energy cosmic rays would only be observable if they
originate from a relatively small volume around our location. A volume 10 Mpc in
radius would encompass only the Local Group of galaxies. Ultra-high energy cosmic
rays that originate farther away would be observed as an accumulation of flux just
below the threshold for photo-pion production, beyond which the spectrum would
drop quickly. This predicted cutoff in the cosmic ray spectrum is known as the GZK
effect after Greisen [10], and Zatsepin and Kuz’min [11], who developed the theory
independently in 1966.
The cutoff energy for analyses of ultra-high energy cosmic rays is typically taken to
be 4×1019 eV. This is based on simulations that show UHECRs emitted by relativelynearby sources (z . 0.057) accumulate just above that energy, at approximately5× 1019 eV with a steep drop-off around 6× 1019 eV [56].
Energy loss by pair production begins to dominate below about 3× 1019 eV [59].By equation (2.18), the threshold for electron pair production with a photon at the
average energy of the CMB is
Emin =
[(2me + mp)
2 −m2p]c4
4 〈²〉 . (2.21)
Given the electron mass of 0.511 MeV, the threshold energy for this process is
Emin = 6.9× 1017 eV. (2.22)
13
The mean energy loss for this process is only 0.1% per encounter, compared to 20%
for photo-pion production, making photo-pair production a less efficient mechanism
for energy loss [60]. The attenuation length for pair production reaches a minimum
of approximately 1000 Mpc at 2× 1019 eV [61].Heavier nuclei are limited in the distance they can travel by photo-disintegration
effects [62, 63]. The current theory that cosmic rays at the highest energies are pre-
dominantly protons or light nuclei is supported by the data from multiple experiments,
including AGASA and HIRES [64].
2.3 Potential UHECR Sources
The observation of cosmic rays above the GZK cutoff raises questions about the
origins of these particles. Particles at energies at and below the knee are believed to be
galactic in origin, with the primary source being supernova shocks [65]. A secondary
source may be OB associations, in which particles are accelerated by turbulent motion
and stellar winds [66]. No individual sources have yet been identified, however.
Only a few known astrophysical phenomena are plausible sources of UHECRs.
These are defined by the “Hillas criterion” [67], which states that a particle accelerated
in a magnetic field can only continue gaining energy until its Larmor radius becomes
comparable to the size of the acceleration region.
Following Longair [68], the Larmor radius of a relativistic particle can be obtained
from its equation of motion,
d
dt(γm0v) = Ze (v ×B) . (2.23)
Using γ =√
1− v·vc2
, this becomes
m0d
dt(γv) = m0γ
dv
dt+ m0γ
3v(v · a
c
). (2.24)
For movement in a magnetic field, the acceleration is perpendicular to the parti-
14
cle’s velocity, v · a = 0. Hence
γm0dv
dt= Ze (v ×B) . (2.25)
Considering only the component of v perpendicular to the magnetic field, and
equating the acceleration with the centrifugal acceleration, we have
ZevB
γm0=
v2
r, (2.26)
which leads directly to the relativistic Larmor radius
rL =γm0v
ZeB. (2.27)
For a relativistic particle, E ' pc = γm0vc. Rewriting the Larmor radius in termsof the energy of the particle, we have
rL =E
ZeBc. (2.28)
Expressing the particle’s energy in units of E18 ≡ E/1018 eV and the magnetic fieldin microgauss, equation (2.28) becomes
rL =1018 eV
ec · 10−6GE18
ZBµG= 1.08
E18ZBµG
kpc. (2.29)
The size L of the region that accelerates the particle must be at least 2rL. Hence
Lkpc &2E18ZBµG
. (2.30)
It is necessary to modify this result to take into account the shock speed βc that is
causing the acceleration [67], yielding
Lkpc &2E18
ZBµGβc. (2.31)
15
Equivalently, the Hillas criterion for the maximum energy to which a region of
size L can accelerate a particle is
E18,max ∼ 0.5ZBµGLkpcβc. (2.32)
At higher energies, the particle will move beyond the region permeated by the
magnetic field, and will escape from the system. The interstellar magnetic field, for
example, is approximately 2–4 µG [69]. Given the disk thickness of the galaxy of
approximately 300 pc, protons can be accelerated in the galactic magnetic field to
at most ∼ 1018 eV [60]. For this reason, it is speculated that most UHECRs areextragalactic in origin.
Speculated extragalactic sources of UHECRs include the following astrophysical
phenomena, as well as more exotic possibilities [52].
2.3.1 Radio Galaxies and AGN
The extended lobes of radio galaxies typically contain “hot spots,” which are inter-
preted to be the shock front of the relativistic jets that emanate from the active
galactic nucleus, or AGN. The hot spots contain a magnetic field up to a few hundred
µG in an area of a few kpc2 [70]. Under these conditions, the Hillas criterion yields
Emax ≈ 1020 eV.This estimate can be refined by taking into account losses due to synchrotron
radiation and photon interactions [71]. Balancing the timescale for energy loss against
the timescale for accleration yields an upper bound on the energy of the cosmic ray
particles that can be produced.
To obtain the timescale for acceleration, we first write the momentum-space parti-
cle conservation equation [54]. Defining κ1 and κ2 to be the upstream and downstream
diffusion coefficients respectively, the number of particles interacting with the shock
is
4πf(p)
(κ1u1
+κ2u2
). (2.33)
16
Particle conservation requires the change in particle number to be balanced by
the divergence of the momentum-space flux and the “source” term, which in this case
represents the downstream flow of particles away from the shock:
∂
∂t
[4πp2f(p)
(κ1u1
+ κ2u2
)]+
∂Ω(p)
∂p= 4πp2f(p)u2. (2.34)
Equation (2.34) can be simplified to
(κ1u1
+κ2u2
)∂f
∂t+
u1 − u23
p∂f
∂p+ u1f = 0. (2.35)
As shown by Drury [72], it follows that the mean acceleration time from some
momentum p0 to p is
〈tacc(p)〉 = 3u1 − u2
∫ pp0
(κ1u1
+κ2u2
)dp
p. (2.36)
The timescale for acceleration of particles of momentum p is therefore
τacc =3
u1 − u2
(κ1u1
+κ2u2
). (2.37)
For a strong shock, r = u1/u2 = 4. If the upstream and downstream diffusion
lengths are assumed to be equal, the acceleration timescale further simplifies to
τacc = 20κ
u21. (2.38)
Following Biermann and Strittmater [71], in order to evaluate this timescale in
the environment of an active galaxy, we need to evaluate the diffusion coefficient κ.
The diffusion coefficient is related to the mean free path λ and to the scattering time
τS ∼ λ/c byκ ∼
(4
3π
)(λ2
τS
). (2.39)
In the small-angle resonant scattering approximation, where the particle deflection
is dominated by Alfvèn waves with wavelength equal to the gyroradius of the particle,
17
the mean free path is given by
λ = rgB2/8π
I(k)k. (2.40)
Here I(k) is the magnetic energy density per unit wavenumber k in the magnetic
field. The resonant scattering approximation requires k ∼ 1/rg. The mean free paththerefore depends on the spectrum of the turbulent magnetic field.
If we assume Kolmogorov-type turbulence, I(k) = I0(k/k0)β, where β ' 5/2, we
have
λ = rg(B2/8π)
I(k)k= rg
(B2/8π
k0I0
)(k
k0
)β−1. (2.41)
The factor k−10 corresponds to the outer scale of turbulence, or equivalently, to rg,max,
the gyration radius of the most energetic particles.
This can be simplified by introducing b, the ratio of turbulent to ambient magnetic
energy density:
b =
∫ ∞k0
I0k0(B2/8π)
=I0k0
(β − 1)(B2/8π) . (2.42)
Inserting equation (2.42) into the expression for λ in equation (2.41), we have
λ =
[rg
b(β − 1)](
rg,maxrg
)β−1. (2.43)
From equation (2.38), we can now write the acceleration timescale as
τacc ∼ 803π
(c
u21
)[rg
b(β − 1)](
rg,maxrg
)β−1. (2.44)
The timescale for proton energy loss to synchrotron radiation is
τsyn =6πm3pc
σT m2eγpB2, (2.45)
where mp is the proton mass, σT is the Thompson cross section, and γp is the Lorentz
factor of the accelerated proton.
18
The general expression for energy loss due to proton-photon interactions is
1
τpγ=
∫ ∞²rmth/2γp
d² n(²)c
2γ2p²2
∫ 2γp²²th
kp(²′)σ(²′)²′d²′, (2.46)
where n(²) is the number density of photons per unit energy interval, ²th is the energy
threshold for inelastic collisions, kp(²) is the inelasticity, and σ(²) is the cross section
for interaction in the relativistic proton frame.
The number density of photons is assumed to have the form
n(²) =
(N0/²0)(²/²0)−2, ²0 ≤ ² ≤ ²∗,
0, otherwise.
(2.47)
where ²0 and ²∗ correspond to radio and γ-ray energies respectively.
The integral in equation (2.46) can then be evaluated to be
1
τpγ=
a
6πγp
[σγp
ln (²∗/²0)
](B2
mpc
), (2.48)
where a is the ratio of photon to magnetic energy density, given by
a =N0²0 ln (² ∗ /²0)
(B2/8π). (2.49)
The total energy loss timescale for protons is therefore
1
τp=
1
τp,sy+
1
τpγ=
1
τp,syn(1 + Aa), (2.50)
where
A =σγpσT
(mp/me)2
ln (²∗/²0)≈ σγp
σT1.6× 105 ≈ 200. (2.51)
This leads to a maximum Lorentz factor for accelerated protons of
γp,max =
[27πb
320(β − 1)1/2 e
r20B
]1/2 (uc
) (mpme
) (1
1 + Aa
)1/2, (2.52)
19
where r0 is the classical electron radius.
Given typical hotspot parameters (β ' 5/3, a ∼ 0.1, b ∼ 0.5, u ∼ 0.3c, andB ∼ 3× 10−4 G) [52], the corresponding maximum energy to which a proton can beaccelerated is
Ep,max = γp,maxmpc2 ∼ 2× 1020 eV. (2.53)
Particles can also be accelerated to ultra-high energies within the jets or within
the AGN itself. For example Knot A in the M87 jet has linear dimension LM87 ∼2 × 1020 cm and magnetic field B ∼ 300 µG [73]. A typical active galactic nucleuscan have L ∼ 1015 cm and B ∼ 1 G [74].
It should be noted, however, that there is limited number of AGN within 100 Mpc
of our location, and none are clear candidate sources for the 1020 eV AGASA events.
Associations between UHECR data and BL Lac objects have been investigated [75,
76, 77, 78] but the claims of a correlation are contested [79].
More recently, the Auger Collaboration has claimed to observe a correlation be-
tween their UHECR data and nearby AGN [47, 48]. The HiRes Experiment has failed
to reproduce this result [49]. The details of these correlation searches are presented
in section 9.1.
2.3.2 Neutron Stars and Magnetars
Given the constraints of the GZK cutoff, it is attractive to consider nearby phenomena
that might produce the observed cosmic ray events above 1020 eV. Unfortunately
there are very few plausible possibilities within our own galaxy. One suggestion is
that neutron stars may transfer their rotational kinetic energy to the kinetic energy
of heavy nuclei via relativistic magnetohydrodynamic wind [80].
A young neutron star may have a rotation rate of Ω ∼ 3000 rad s−1 and a surfacemagnetic field of up to BS & 1013 G at RS = 106 cm. The field strength decreases asB(R) = BS(RS/r)
3.
The light cylinder of the star (the maximum radius at which the dipole field can
be sustained), is located at RLC = c/Ω. The magnetic field at the light cylinder is
20
therefore
BLC = BS
(RSc/Ω
)3= 1010B13Ω
33k G, (2.54)
where B13 ≡ B/1013 G and Ω3k ≡ Ω/3000 rad s−1.The maximum energy of particles that can be contained in the system out to the
radius of the light cylinder is
Emax = ZeBLCRLCc ' 8× 1020Z26B13Ω23k eV, (2.55)
where Z26 ≡ Z/26.Magnetars are neutron stars with unusually high magnetic fields, in the range of
1015 G. A “fast magnetar” may have a rotational frequency of 104 rad s−1. Using
these values in equation (2.55), we find the maximum energy is
Emax = ZeBLCRLCc ' 3× 1022ZB15Ω24 eV, (2.56)
where B15 ≡ B/1015 G and Ω4 ≡ Ω/104 rad s−1 [81].
2.3.3 Quasar Remnants
A quasar remnant is the end-stage evolution of a luminous quasar: a spinning su-
permassive black hole, threaded by magnetic fields generated by currents flowing in
a disc around it. We appear to live in an epoch where luminous quasars are rare.
However, extrapolating from the number of luminous quasars at high redshift, the
number of quasar remnants nearby may be large and these have been postulated to
be a source of UHECRs [82]. The relatively dormant supermassive black holes found
in many giant elliptical galaxies are likely examples of such “dead” quasars.
A Kerr black hole whose event horizon is threaded by an external magnetic field
can act as a battery [83], and the EMF generated would potentially be sufficient to
accelerate a proton to ultrahigh energies. If B is the strength of the ordered poloidal
magnetic field near the hole, then V ∼ aB, where a is the hole’s specific angularmomentum [84]. (For a black hole of mass M , a ≤ M .) In appropriate astrophysical
21
units, the EMF generated is
∆V ∼ 9× 1020( a
M
)M9B4 V, (2.57)
where M9 ≡ M/109M¯ and B4 ≡ B/104 G.In the case of an advection-dominated accretion flow (ADAF) onto the black hole,
the strength of the magnetic field near the event horizon is related to the accretion
rate Ṁ (in units of M¯ yr−1) by
B4 = 1.33M−19 Ṁ
1/2, (2.58)
under the assumption that the energy density of the magnetic field is in equipartition
with the rest mass of the accreting matter [85].
The combination of equation (2.57) and equation (2.58) yields a maximum possible
EMF of
∆V = 1.2× 1021Ṁ1/2 V, (2.59)
where we have taken a ' M for a maximally rotating black hole.The maximum obtainable energy, however, is less than this quantity because en-
ergy is lost to curvature radiation [86]. For an average curvature radius ρ, the rate of
energy loss by a particle of energy E = γmc2 is
P =2
3
Z2e2cγ4
ρ2. (2.60)
The energy change per unit distance for a particle with mass µmp is
dE
ds=
eZ∆V
h− P
c, (2.61)
where h is the gap height of the black hole. Integrating over s from 0 to h yields the
22
maximum energy to which the particle can be accelerated:
Emax = 3× 1019µZ−1/4M1/29 B1/44(
ρ2h
R3g
)1/4eV. (2.62)
This can be simplified by assuming h ≈ Rg and r ≈ Rg. For a proton (µ = 1 andZ = 1), we can use then equation (2.58) to obtain
Emax = 1.0× 1020Ṁ10M1/49 eV, (2.63)
where Ṁ10 ≡ Ṁ/10M¯ yr−1.
2.3.4 Starburst Galaxies and LIGs
Starbursts are galaxies undergoing a period of intense star formation. Due to numer-
ous supernovae, a cavity of hot gas can be created in the center of an active region.
Given that the cooling time of the gas is longer than the expansion timescale, the hot
gas will expand and form a shock front as it contacts the cooler interstellar medium.
Ions such as iron nuclei can be accelerated to super-GZK energies in these conditions
by Fermi’s mechanism [87].
The acceleration of nuclei in this scenario is a two-stage process beginning with
diffusive acceleration to energies of 1014−−1015 eV at supernova shock fronts [88]. Theions are then injected into the galactic-scale wind created by the starburst region [89,
90, 91]. The maximum particle energy that can be obtained from this process is
Emax =1
4ZeBv2shτ, (2.64)
where vsh is the shock velocity and τ is the age of the starburst [87].
The shock velocity is related to the kinetic energy flux of the superwind, Ėsw, and
the mass flux, Ṁ , generated by the starburst as
Ėsw =1
2Ṁv2sh. (2.65)
23
Substituting this into equation (2.64), we have
Emax =1
2ZeB
Ėsw
Ṁτ. (2.66)
Two nearby starburst galaxies that are candiates for UHECR production are M82
and NGC253. NGC253, for example, has a kinetic energy flux of 2× 1042 erg s−1 anda mass flux of 1.2 M· yr−1 [92], and a magnetic field strength of B ∼ 50 µG [93]. Thisleads to an estimated maximum energy for iron nuclei of
EFemax = 3.4× 1020 eV. (2.67)
In an axisymmetric (ASS) galactic field model, the arrival directions of the 4
highest-energy cosmic rays observed as of 2003 were found to be associated with
starburst galaxies [94]. However, in a bisymmetric (BSS) galactic field model, smaller
cosmic ray deflections result in an absence of correlation.
Luminous infrared galaxies (LIGs), which may form after a collision between
galaxies, are similar to starburst galaxies on a larger scale [95]. LIGs have luminosi-
ties above 1011 L¯, and are the dominant extragalactic objects in the local universe
in that luminosity range.
The triplet event observed by AGASA [25, 26, 27] is potentially associated with
the LIG Arp299 [96].
2.3.5 Gamma Ray Bursts
Gamma ray bursts (GRBs) are short bursts of high-energy radiation [97]. They are
among the most energetic phenomena in the universe; a single gamma ray burst may
be brighter than all other gamma ray sources combined.
The most popular theory of the origin of GRBs is the “fireball” model: GRBs
are believed to arise from the dissipation of the kinetic energy of a relativistically
expanding wind, the cause of which remains unknown [98]. Gamma ray bursts feature
a rapid rise time and short duration (∼ 1 ms), which implies a compact source. The
24
detection of afterglows has allowed the measurement of the redshifts of some GRB
host galaxies, and confirmed that GRBs originate at cosmological distances [99, 100].
The compactness and high gamma ray luminosity result in a high optical depth
to pair creation. This creates a thermal plasma, the radiation pressure of which
drives relativistic expansion. Conditions within the fireball may accelerate protons
to energies greater than 1020 eV, provided the magnetic field is close to equipartition
with electrons [52].
The principal difficulty with the GRB theory of cosmic ray origins is the cosmo-
logical distances involved. If the GRB redshift distribution follows that of the star
formation rate in the universe, which increases with redshift, the flux of ultra-high
energy cosmic rays is predicted to be attenuated by the GZK cutoff at energies above
3× 1019 eV [101, 102].
2.3.6 Top-Down Models
Due to the difficulty in finding physical phenomena that can accelerate particles to
ultra-high energies, many alternative models have been proposed in which ultra-high
energy cosmic rays originate in the decay of massive unstable particles. This idea
originated with Georges Lemâıtre [103], who in 1931 proposed that all material in the
universe originated in the decay of a “primeval atom.”
In top-down models, massive particles (generically known as “X” particles) with
mass mX > 1011 GeV are generated from high energy processes in the early universe,
and their decay continues in the present time. UHECRs emitted by such decays
avoid the GZK attenuation experienced by particles with a cosmological origin. A
wide variety of specific mechanisms involving theories such as string/M theory, super-
symmetry (SUSY), grand unified theories (GUTs), and TeV-scale gravity have been
invoked as possible origins of ultra-high energy cosmic rays [52, 51, 61].
25
Chapter 3
Cosmic Ray Air Showers
When an ultra-high energy cosmic ray enters the atmosphere and precipitates an air
shower, much of the information describing the incident particle is lost. Properties
of interest include the species, energy and incident angle of the primary particle. In
order to extract this information from the ground data, we require a reliable model
of air shower development. The CHICOS project has used extensive simulations of
air showers to construct analytical descriptions of the shape of the air shower front.
The components of the particle cascade are examined in section 3.1. The measured
intensity of the air shower is characterized by the lateral distribution function (LDF)
and the time distribution function (TDF). The CHICOS-specific LDF is presented in
section 3.2 and the CHICOS-specific TDF is presented in section 3.3.
3.1 Air Shower Development
An ultra-high energy cosmic ray incident on the Earth will eventually collide with an
atom in the atmosphere. The output of such a collision will include protons, neutrons,
smaller atomic nuclei, and mesons [64]. Some of these particles will go on to interact
with other atoms in the atmosphere, forming a hadronic cascade that makes up the
core of an air shower (figure 3.1).
Large numbers of pions are produced in the hadronic interactions. The main decay
26
+π π − K0K−+K K0 π0 K−+K +π π −
µ+ µ−
µ−µ−µ+ µ+
e−+ee−+e
_νµ
_νµνµνµ
e− e−+e +e
Molecule in the Atmosphere
Primary Particle
γ
πK
Hadronic Cascade Electromagnetic ComponentMuonic Component
p, n, , γγγ γ
γ
+ Nuclear Fragments
Figure 3.1. Diagram of an air shower. An air shower comprises a hadronic core,a muonic component, and an electromagnetic cascade. Decay paths leading to thethese three main components are shown.
mode of π0 particles is
π0 → γ + γ (τ = 0.83× 10−16 s). (3.1)
The high energy photons produced by this decay initiate an electromagnetic cas-
cade via alternating electron-positron pair production and bremsstrahlung. This pro-
cess is interrupted when the electrons fall below the critical energy for air of∼ 81 MeV,at which point more energy is lost to ionization than to bremsstrahlung, and the in-
tensity of the electromagnetic cascade begins to attenuate [55].
In addition to the hadronic and electromagnetic components of the air shower,
there is also a muonic component. Muons are created by the decays
π± → µ± + νµ(νµ) (τ = 2.063× 10−8 s) (3.2)
27
perpr
CurvatureDelay
θ
Spread
Detectors
Ground
Shower Axis
Shower Plane
Figure 3.2. Profile of an air shower. The shower front is a curved surface with afinite thickness. Moving away from the center of the shower, the particle intensitydecreases, while the spread in the depth of the shower front increases. Distance fromthe core of the shower is measured along r⊥, perpendicular to the shower axis.
and
K± → µ± + νµ(νµ). (τ = 1.237× 10−8 s) (3.3)
Muons are the most penetrating component of the air shower, and reach the
ground with little attenuation and only slight energy loss to ionization. They do
contribute somewhat to the electromagnetic cascade via the decay
µ± → e± + νe(νe). (τ = 2.197× 10−6 s) (3.4)
The electromagnetic component dominates the air shower, comprising about 90%
of shower particles. The muonic component accounts for most of the remaining 10%,
with the hadronic core making up less than 1% of the total shower. The resulting
particle front of the air shower is a thin curved surface, traveling close to the speed of
light, which spreads out from the axis of the primary particle’s trajectory. The width
of this shower front increases with distance from the shower axis (figure 3.2).
28
The precise evolution of a cosmic ray air shower can be modeled with codes such as
AIRES (AIRshower Extended Simulations) [104, 105, 106] and CORSIKA (COsmic
Ray SImulations for KAscade) [107]. The CHICOS project is currently using AIRES
version 2.6.0, which is freely available from the Universidad Nacional de La Plata,
Argentina [108]. The simulation code in turn depends on specific models of hadronic
interactions; AIRES uses the SIBYLL and QGSJET models.
We have made use of a series of AIRES simulations in order to accurately model
the air showers observed by CHICOS. The simulations were divided into two groups:
low-energy (for the Chiquita subarray) and high-energy (for the CHICOS array).
Protons and iron nuclei were used as the primary particles, and the resulting showers
were measured at the CHICOS average altitude of 250 meters above sea level.
The low-energy simulations cover the energy range between 1016 eV and 1017.5 eV.
Ten showers were simulated at each primary energy (log (E/eV) = 16.0, 16.5, 17.0,
17.5) and each zenith angle (cos θ = 0.75, 0.85, 0.95), for each type of primary particle
(proton or iron nucleus). The iron showers were used as the basis for the low-energy
LDF, based on evidence that heavy nuclei predominate at those energies [109, 110,
111].
The high-energy simulations cover the energy range between 1018 eV and 1020.5 eV.
Ten showers were simulated at each primary energy (log (E/eV) = 18.0, 18.5, 19.0,
19.5, 20.0, 20.5) and each zenith angle (cos θ = 0.55, 0.65, 0.75, 0.85, 0.95), for each
type of primary particle (proton or iron nucleus). The proton showers were used as
the basis for the high-energy LDF, based on evidence that protons predominate at
those energies [112].
Tracking all particles generated in a simulated ultra-high energy air shower is
beyond the computational resources available. (An air shower with primary en-
ergy 1020 eV will generate approximately 1011 secondary particles.) All simula-
tions have therefore employed statistical thinning, beginning at an energy threshold
Eth = 10−7Eprimary. When an interaction within the shower generates particles with
energy below this threshold, only a subset of the secondary particles with E < Eth
will continue to be tracked by the simulation. The accepted particle is assigned a
29
statistical weight equal to the number of particles it represents in the simulation.
AIRES employs the Hillas thinning algorithm [105]. When a particle with energy
E ≥ Eth generates a set of secondary particles with energies Ei, each secondary par-ticle is individually tested against the thinning energy and accepted with probability
Pi =
1, Ei ≥ EthEiEth
, Ei < Eth.
(3.5)
If the primary particle has E < Eth, only one secondary particle will be conserved.
It is selected from the set of secondary particles with probability
Pi =Ei∑nj=1 Ei
. (3.6)
The weight of the accepted secondary particle is equal to the weight of the primary
multiplied by the inverse of Pi.
AIRES provides an optional statistical weight factor, Wf , which limits the par-
ticle weights that may be assigned. Given a value for Wf , AIRES sets two internal
parameters
Wr = 14 GeV−1EthWf (3.7)
and
Wy = Wr/8. (3.8)
In an interaction that generates 3 or fewer secondary particles, if the weight of the
primary is w > Wy or if wE/min(E1, ..., Ei) > Wr, then all of the secondary particles
will be kept; otherwise the standard Hillas algorithm is used. If more than 3 particles
are generated, then the Hillas algorithm is always used, but if the weight w′ of the
single selected secondary is larger than Wr, then m copies of the secondary are kept
(each with weight equal to the weight of the secondary particle divided by m. The
integer m is adjusted to ensure that Wy < w′/m < Wr. For the CHICOS simulations,
the AIRES statistical weight factor was set to Wf = 1.
30
(a) (b)
Figure 3.3. Comparison of CORSIKA and AIRES simulations. A set of 10 showerswas generated with each program, using the input parameters E = 1017 eV andcos θ = 0.95. The lateral distributions are shown for (a) electrons and (b) muons.The discrepancy in the first bin is due to a difference in the inner radial cutoff of thesimulations.
Shower particles were tracked down to Ee±,γ = 1 MeV and Eµ± = 20 MeV. A 5
MeV cutoff corresponding to the detector sensitivity threshold was applied to particles
reaching the ground. The 5 MeV energy threshold applied to ground particles is the
same as that used by the KASCADE experiment [113, 114]. The number of electrons
reaching the ground with energy between 1 and 5 MeV is approximately 20% of the
total. The total number above threshold, however, is not a sensitive function of the
cutoff energy in the 5 MeV range.
The accuracy of our AIRES simulations has been confirmed by performing a small
series of simulations at 1017 eV using the CORSIKA code (figure 3.3). The lateral
distributions of electrons and muons generated by the two codes were found to agree
well.
3.2 Lateral Distribution Function
An air shower front is characterized by its lateral distribution function (LDF), which
describes the intensity of particles ρ(r⊥; E, θ) as a function of perpendicular distance
r⊥ from the shower core and is an implicit function of the energy and angle of incidence
31
of the shower. The CHICOS reconstruction software originally used the LDF obtained
empirically by the AGASA experiment as a first approximation to the LDF at our
altitude. After completing a representative set of simulated showers, a new CHICOS-
specific LDF was developed.
For a pure electromagnetic cascade, the lateral distribution function is given by
the Nishimura-Kamata-Greisen (NKG) function,
ρ(r⊥) = CNeR2M
(r⊥RM
)s−2 (1 +
r⊥RM
)s−4.5, (3.9)
where Ne is the number of particles in the shower, and s is the “age parameter” of
the shower [115, 116]. The Molière unit, RM , characterizing the scattering length,1
is equal to 91.6 m at the altitude of AGASA, and 85 m at the altitude of CHICOS.
In a cosmic ray air shower, the electromagnetic component is a combination of
electromagnetic cascades initiated by the π0 particles produced in successive interac-
tions of the central hadronic cascade. Thus the electromagnetic component near the
center of the shower consists of “younger” (less developed) showers than the electro-
magnetic component far from the shower axis. In this case the lateral distribution
of charged particles becomes flatter than for a single electromagnetic cascade. This
distribution can described by the generalized NKG function [118] as
ρ(r⊥) ∝(
r⊥RM
)−α (1 +
r⊥RM
)−(η−α). (3.10)
This formula is the basis for both the AGASA and CHICOS lateral distribution
functions.
1The Molière unit is defined by RM = XRES/EC , where the radiation length XR is the scalelength for energy losses from electron bremsstrahlung, the critical energy EC is the energy at whichbremsstrahlung and ionization losses are equal, and the scattering energy ES relates the mean-square scattering angle to the distance x traversed by an electron in the multiple-scattering formula〈θ2〉 = (ES/EC)2x/XR [117].
32
3.2.1 AGASA LDF
The AGASA LDF is given by the modified NKG function
ρ(r⊥) = C(
r⊥RM
)−α (1 +
r⊥RM
)−(η−α) [1 +
( r⊥1000 m
)2]δ, (3.11)
where r is the distance in meters from the core of the shower, and C is a proportion-
ality constant related to the energy of the primary particle. The parameters α and δ
are found to be 1.2 and 0.6, respectively [119].
The parameter η depends on the incident angle θ, measured from the vertical:
η = (3.97± 0.13)− (1.79± 0.62)(sec θ − 1), (3.12)
for incident angles θ ≤ 45◦. No energy dependence of η has been observed, so it isassumed that this formula for the LDF can be used to describe even the highest-energy
showers [23].
The measured intensity S(r) is a function of the LDF and the detector response.
For scintillating detectors, the signal is determined by the average energy loss in the
scintillator of electrons, photons, and muons. This function can be expressed in units
of the energy loss of vertically penetrating muons, Ce, a convenient measure because
they determine the peak of the spectrum of single-particle events. Thus, the measured
intensity of a vertical shower is given by
S0(r) = NeCe
(r⊥RM
)−α (1 +
r⊥RM
)−(η−α) [1.0 +
( r⊥1000 m
)2]δ. (3.13)
This function has been shown to be valid between 500 m and 3 km from the core of
the shower, at energies up to 1020 eV [120].
Using Monte Carlo simulations [121], AGASA finds that for vertical showers, the
energy of the incident cosmic ray is related to S0(600), the measured intensity at a
33
distance of 600 meters from the core, by the formula
E0 = (2.03± 0.10)× 1017 eV · S0(600)1.02±0.02. (3.14)
A shower that enters the atmosphere with an inclined trajectory passes through
a greater air depth, and the shower development is correspondingly affected. To
determine the energy of an air shower at incident angle θ, the measured intensity
Sθ(600) must first be converted to an equivalent value of S0(600) by the formula
Sθ(600) = S0(600) exp
[−X0
Λ1(sec θ − 1)− X0
Λ2(sec θ − 1)2
], (3.15)
Here X0 = 920 g/cm2, Λ1 = 500 g/cm
2, and Λ2 = 594+268−120 g/cm
2. This conversion
formula is valid for θ ≤ 45◦ [119].
3.2.2 CHICOS LDF
Each CHICOS LDF (low-energy and high-energy) was fit separately to the distribu-
tions of muons and electrons. For each species (muons and electrons), the AIRES
simulations were used to fill histograms of particle intensity as a function of r⊥; low-
energy showers were fit between 25 m and 1000 m using 10 m bins, while high-energy
showers were fit between 25 m and 4000 m using 50 m bins. The histograms were
averaged over the 10 runs at each energy and zenith angle and the standard deviation
of the runs was used as the uncertainty in the histogram.
The scintillator detectors used by CHICOS do not distinguish between electrons
and muons, therefore the measured intensity must be compared with the sum of the
electron and muon LDFs:
ρtot(r⊥, E, θ) = ρe(r⊥; E, θ) + ρµ(r⊥; E, θ). (3.16)
Each particle LDF is given by a modified NKG formula similar to that used by
34
AGASA:
ρe,µ(r⊥; E, θ) =
Ce,µ(E)
(r⊥
(RM)e,µ
)−αe,µ (1 +
r⊥(RM)e,µ
)−(ηe,µ−αe,µ) [1 +
( r⊥1000 m
)2]δe,µ. (3.17)
In this function, the parameter C is explicitly a function of energy. Thus no conversion
to S0(600) is necessary in order obtain the energy of a shower after it has been fit
to the CHICOS LDF. The Molière radius has in this expression been replaced by an
effective Molière radius, which was fit simultaneously with the other parameters. In
addition, the constant α has been replaced by a parameterized function. For the low-
energy (iron-primary) LDF, αe,µ = αe,µ(E). For the high-energy (proton-primary)
LDF, αe = αe(θ), while αµ remains a constant.
The parameters of the low-energy electron LDF are as follows:
RMe = 82.0 m
δe = 0.4
αe = 1.429 + 0.6220(log(E/eV)− 17.0) (3.18)ηe = 0.307 + 3.656 cos θ
log10(Ce) = 1.88 + 1.0(log(E/eV)− 17.0) + 5.0(cos θ − 0.85)
Similarly, the parameters of the low-energy muon LDF are as follows:
RMµ = 102.5 m
δµ = −0.9αµ = 0.5647 + 0.06972(log(E/eV)− 17.0) (3.19)ηµ = 1.247 + 0.8214 cos θ
log10(Cµ) = 0.78 + 0.9(log(E/eV)− 17.0) + 1.2(cos θ − 0.85)
35
The parameters of the high-energy electron LDF, expressed in a slightly different
format are:
RMe = 2477 m
δe = 0.03107
αe = 2.774 + 1.326(sec θ − 1) (3.20)ηe = 7.794− 2.404(sec θ − 1)
log10(Ce) = −0.015 + 0.95(log(E/eV)− 19.0)− 0.56(sec θ − 1)
Similarly, the parameters of the high-energy muon LDF are:
RMµ = 2560 m
δµ = 0.01939
αµ = 0.7701 (3.21)
ηµ = 9.020 + 2.552(sec θ − 1)log10(Cµ) = 1.2 + 0.97(log(E/eV)− 19.0)− 0.72(sec θ − 1)
The CHICOS low-energy LDF is considered valid for energies approximately be-
tween 1016 eV and 1019 eV, and for zenith angles out to 45◦. The high-energy LDF
is considered valid for energies of 1018 eV and above, and for zenith angles out to
approximately 60◦.
Figure 3.4 shows the behavior of the low-energy (iron-primary) electron LDF over
a range of energies and zenith angles, compared with AIRES simulations of particle
density. Figure 3.5 shows the same series of plots for the muon component of the
showers.
Figure 3.6 shows the behavior of the high-energy (proton-primary) electron LDF
over a range of energies and zenith angles, compared with AIRES simulations of
particle density. Figure 3.7 shows the same series of plots for the muon component
of the showers.
36
[m]r0 100 200 300 400 500 600 700 800 900 1000
]-2
[m
ρ
-310
-210
-110
1
10
[m]r0 100 200 300 400 500 600 700 800 900 1000
]-2
[m
ρ
-310
-210
-110
1
10
[m]r0 100 200 300 400 500 600 700 800 900 1000
]-2
[m
ρ
-310
-210
-110
1
10
(a)
[m]r0 100 200 300 400 500 600 700 800 900 1000
]-2
[m
ρ
-210
-110
1
10
210
[m]r0 100 200 300 400 500 600 700 800 900 1000
]-2
[m
ρ
-210
-110
1
10
210
[m]r0 100 200 300 400 500 600 700 800 900 1000
]-2
[m
ρ
-110
1
10
210
310
(b)
Figure 3.4. Low-energy iron-primary electron LDF. The behavior of the simulatedelectron/positron density as a function of r⊥ for iron primaries of energy (a) E =1016 eV, and (b) E = 1017 eV. Within each set at a given energy, results are shown(from left to right) for zenith angles cos θ = (0.75, 0.85, 0.95). Points with error barsare AIRES output (mean and standard deviation of 10 runs). The solid curve overlayshows the electron LDF parameterization defined in equation (3.18).
37
[m]r0 100 200 300 400 500 600 700 800 900 1000
]-2
[m
ρ
-210
-110
1
[m]r0 100 200 300 400 500 600 700 800 900 1000
]-2
[m
ρ
-210
-110
1
[m]r0 100 200 300 400 500 600 700 800 900 1000
]-2
[m
ρ
-210
-110
1
(a)
[m]r0 100 200 300 400 500 600 700 800 900 1000
]-2
[m
ρ
-110
1
10
[m]r0 100 200 300 400 500 600 700 800 900 1000
]-2
[m
ρ
-110
1
10
[m]r0 100 200 300 400 500 600 700 800 900 1000
]-2
[m
ρ
-110
1
10
(b)
Figure 3.5. Low-energy iron-primary muon LDF. The behavior of the simulated muondensity as a function of r⊥ for iron primaries of energy (a) E = 1016 eV, and (b) E= 1017 eV. Within each set at a given energy, results are shown (from left to right)for zenith angles cos θ = (0.75, 0.85, 0.95). Points with error bars are AIRES output(mean and standard deviation of 10 runs). The solid curve overlay shows the muonLDF parameterization defined in equation (3.19).
38
[m]r0 500 1000 1500 2000 2500 3000 3500 4000
]-2
[m
ρ
-510
-410
-310
-210
-110
1
10
210
[m]r0 500 1000 1500 2000 2500 3000 3500 4000
]-2
[m
ρ
-410
-310
-210
-110
1
10
210
310
[m]r0 500 1000 1500 2000 2500 3000 3500 4000
]-2
[m
ρ
-410
-310
-210
-110
1
10
210
310
410
(a)
[m]r0 500 1000 1500 2000 2500 3000 3500 4000
]-2
[m
ρ
-310
-210
-110
1
10
210
[m]r0 500 1000 1500 2000 2500 3000 3500 4000
]-2
[m
ρ
-310
-210
-110
1
10
210
310
410
[m]r0 500 1000 1500 2000 2500 3000 3500 4000
]-2
[m
ρ
-310
-210
-110
1
10
210
310
410
510
(b)
[m]r0 500 1000 1500 2000 2500 3000 3500 4000
]-2
[m
ρ
-310
-210
-110
1
10
210
310
410
[m]r0 500 1000 1500 2000 2500 3000 3500 4000
]-2
[m
ρ
-210
-110
1
10
210
310
410
510
[m]r0 500 1000 1500 2000 2500 3000 3500 4000
]-2
[m
ρ
-310
-210
-110
1
10
210
310
410
510
610
(c)
Figure 3.6. High-energy proton-primary electron LDF. The behavior of the simulatedelectron/positron density as a function of r⊥ for proton primaries of energy (a) E= 1018 eV, (b) E = 1019 eV, and (c) E = 1020 eV. Within each set at a givenenergy, results are shown (from left to right) for zenith angles cos θ = (0.55, 0.75,0.95). Points with error bars are AIRES output (mean and standard deviation of 10runs). The solid curve overlay shows the electron LDF parameterization defined inequation (3.20).
39
[m]r0 500 1000 1500 2000 2500 3000 3500 4000
]-2
[m
ρ
-310
-210
-110
1
10
[m]r0 500 1000 1500 2000 2500 3000 3500 4000
]-2
[m
ρ
-310
-210
-110
1
10
[m]r0 500 1000 1500 2000 2500 3000 3500 4000
]-2
[m
ρ
-310
-210
-110
1
10
210
(a)
[m]r0 500 1000 1500 2000 2500 3000 3500 4000
]-2
[m
ρ
-210
-110
1
10
210
[m]r0 500 1000 1500 2000 2500 3000 3500 4000
]-2
[m
ρ
-210
-110
1
10
210
[m]r0 500 1000 1500 2000 2500 3000 3500 4000
]-2
[m
ρ
-210
-110
1
10
210
310
(b)
[m]r0 500 1000 1500 2000 2500 3000 3500 4000
]-2
[m
ρ
-110
1
10
210
310
[m]r0 500 1000 1500 2000 2500 3000 3500 4000
]-2
[m
ρ
-110
1
10
210
310
[m]r0 500 1000 1500 2000 2500 3000 3500 4000
]-2
[m
ρ
-110
1
10
210
310
410
(c)
Figure 3.7. High-energy proton-primary muon LDF. The behavior of the simulatedmuon density as a function of r⊥ for proton primaries of energy (a) E = 1018 eV, (b)E = 1019 eV, and (c) E = 1020 eV. Within each set at a given energy, results areshown (from left to right) for zenith angles cos θ = (0.55, 0.75, 0.95). Points witherror bars are AIRES output (mean and standard deviation of 10 runs). The solidcurve overlay shows the muon LDF parameterization defined in equation (3.21).
40
3.3 Time Distribution Function
In a ground array, the angle of incidence of a cosmic ray shower is determined by
fitting the relative particle arrival times at sites in the array to the shape of the
shower front. This is complicated by the fact that the particle front of a cosmic ray
air shower is not planar, but rather curves back from the center of the shower. In
addition, the width of the particle front varies; it is narrow close to the shower axis
and wider toward the edges. In general, the front edge of the shower is a steep rise
to a maximum particle intensity followed by a longer tail of particles trailing behind
the shower front. The time distribution function (TDF) describes the time (relative
to a plane perpendicular to the shower axis) at which particles in the shower front
will reach a detector at a given distance from the core.
There is no well-motivated model for the TDF similar to the NKG formula for the
LDF. The TDF developed by AGASA was obtained experimentally and was originally
used as a first approximation to the CHICOS TDF. A complete description of the
CHICOS-specific TDF has since been developed by fitting a parameterized function
to AIRES-generated simulated showers.
3.3.1 AGASA TDF
AGASA divided the time distribution function into two separate parts: the average
time delay, Td, due to curvature of the shower front, and the average time spread, TS,
which characterized the width of the shower front [55].
The average time delay, Td, from a plane perpendicular to the shower axis, at
given distance from the core, is given by
Td(ρ, r) = 2.6(1 +
r
30
)1.5ρ(r)−0.5 ns, (3.22)
where r is in meters.
41
The AGASA formula for the width of the shower front, Ts, is given by
Ts(ρ, r) = 2.6(1 +
r
30
)1.5ρ(r)−0.3 ns. (3.23)
The time-delay and time-spread formulae were modified for CHICOS by removing
the ρ(r) term in Td, and replacing ρ(r)−0.3 with ρ(r)−0.5 (i.e., pure counting statis-
tics) in Ts. This was done because the CHICOS detectors have a much shorter time
constant than AGASA detectors; hence the CHICOS detectors can generally resolve
individual particles (sufficiently far from the core of the shower), while AGASA mea-
surements integrated all particles in the shower front in a single pulse. The equations
for Td and Ts in their original form describe the time delay and spread of the first
particle to hit the detector, whereas it is more appropriate for CHICOS to use the
average time delay and overall spread of all incident particles.
3.3.2 CHICOS TDF
The AGASA TDF was designed to be used with chi-square fit methods. Such parame-
terizations have traditionally taken the form of a time delay function combined with a
Gaussian uncertainty in the arrival time of particles within the shower front. Detailed
shower simulations show that this is not an accurate model on timescales measureable
by CHICOS; the shape of the particle distribution within the shower front is decid-
edly non-Gaussian, with a steep initial rise and a broad tail. The greater resolution of
CHICOS hardware makes it more appropriate and desirable to use a maximum likeli-
hood method in conjuction with a more complete description of the time distribution
at all distances from the shower core.
The CHICOS TDF, P (t; r⊥, E, θ) describes the distribution of particles hitting
the ground as a function of time at a given distance, r⊥, from the core of the shower.
As with the lateral distribution function, we have derived separate models for the
electron and muon TDFs. The AIRES simulations used in this process is the set
of high-energy, proton-primary showers used to construct the high-energy LDF. In
the case of the TDF, however, it was observed that the shape of the arrival time
42
distribution has very little dependence on energy; thus the set of simulations was
averaged over energy before proceeding.
For each species (muons and electrons), the AIRES simulations were used to fill
histograms of particle intensity as a function of r⊥ and t, using 50-m and 50-ns bins,
respectively. The histograms were averaged over the 10 runs at each energy and
zenith angle and the standard deviation of the runs
Recommended